Reliable modeling of conditional densities is important for quantitative scientific fields such as particle physics. In domains outside physics, implicit quantile neural networks (IQN) have been shown to provide accurate models of conditional densities. We present a successful application of IQNs to jet simulation and correction using the tools and simulated data from the Compact Muon Solenoid (CMS) Open Data portal.
翻译:可靠的有条件密度建模对于粒子物理学等数量科学领域十分重要,在物理领域外的领域中,隐性微量神经网络(IQN)被证明提供了精确的有条件密度模型,我们成功地应用IQNs对喷射机进行模拟和校正,使用的工具和模拟数据来自Compractic Muon Solenoid(CMS)开放数据门户网站。